Bayesian Inferences and Forecasts With Multiple Autoregressive Moving Average Models |
| |
Authors: | Samir Moustafa Shaarawy |
| |
Affiliation: | Faculty of Economics and Political Sciences , Cairo University , Cairo , Egypt |
| |
Abstract: | The main objective of this paper is to develop convenient Bayesian techniques for estimation and forecasting which can be used to analyze multiple (multivariate) autoregressive moving average processes. Based on the conditional likelihood function and the least squares estimates of the residuals, the marginal posterior distribution of the coefficients of the model is approximated by a matrix t distribution, the marginal posterior distribution of the precision matrix is approximated by a Wishart distribution, and the predictive distribution is approximated by a multivariate t distribution. Some numerical examples are given to demonstrate the idea of using the proposed techniques to analyze different types of multiple ARMA models. |
| |
Keywords: | multiple ARMA processes posterior distribution matric-variate generalization of the t distribution a matrix t-approximation |
|
|